How Far Will They Go? Red-Teaming Online Influence with Large Language Models
For researchers and policymakers concerned about LLM-enabled political influence campaigns, this work provides a practical auditing framework and reveals systematic vulnerabilities in open-source models.
The paper introduces a red-teaming framework to measure the range of political opinions (Overton Windows) that open-source LLMs can express on controversial topics and quantifies how jailbreaks expand that range. Testing over 30 models, they find left-leaning bias, narrower windows in larger models, and substantial regional differences.
As large language model (LLM)-based agents increasingly participate in online discourse, red-teaming their capacity to support political influence campaigns is critical for information integrity. In pursuit of this goal, we focus on locally deployed open-source LLMs, as opposed to frontier API-only models, given their superior alignment with the operational constraints of privacy-conscious malicious actors deployed in social media environments. We introduce an empirical red-teaming framework for measuring LLM Overton Windows (OWs), defined as the range of political opinions a model can reliably express on controversial topics, and for quantifying how simple natural-language jailbreaks expand that range. We evaluate more than 30 LLMs spanning 10 model families and five countries of origin. We find systematic asymmetries in political expressivity: open-source LLMs are typically more willing to generate left-leaning social media content, OWs tend to contract inversely to model size, and regional differences are substantial despite uneven representation in the open-source ecosystem. Jailbreak potency also varies sharply across model families, motivating a workflow for identifying effective combinations of jailbreak techniques. Taken together, our results establish a practical framework for auditing the political steerability of open-source LLMs and for helping future researchers design stronger countermeasures against LLM-enabled influence campaigns.